Hi! I’m a data scientist in industry, by way of education research. I am deeply interested in sociology, the data science industry (and making it better), R programming, and education. If you’re in need of a speaker on one of these topics, let me know!
Also, I am committed to helping other women get into the data science field, so if you need advice or support, contact me!
I code in R, SQL, and Python, using RStudio and Spyder as my preferred IDEs, or Jupyter notebooks for some Python projects. I also actually enjoy writing LaTeX with Sweave and R, to make snazzy print reports.
To see more about what kinds of data science skills I have, check out my projects or my Github profile.
To manage code and tasks, I use Git and Airflow. I also have experience with Elasticsearch databases and R package development.
This site is built in RMarkdown.
I enjoy doing data projects in my spare time, and while you can find most of them on kaggle or github, here are direct links to some of my favorites.
This project is a kaggle kernel, in which I walked the reader through the process of cleaning and modeling the data from a real estate prices dataset, using linear modeling, random forests, and gradient boosting (xgboost). My most popular kernel to date! This one also produced respectable competition results, and was chosen for special recognition by the Kaggle admins. (I won a mug!)
Update: Read the interview I did regarding this project (and the other fabulous winners)! http://blog.kaggle.com/2017/03/29/predicting-house-prices-playground-competition-winning-kernels
Key Skills: machine learning, data cleaning
This is still a work in progress, but I’m planning to complete several components:
Come back to check out the latest as I continue working!
I led a team working on the Chicago Lobbying project, which produced some great output, including this visualization of lobbying and aldermen in Chicago. The project is continuing and building out new functionality. I personally cleaned some of the data underlying, but my biggest contribution was organizing, planning, and leadership. Additional results: https://data.world/lilianhj/chicago-lobbyists
Update: Check out a case study by the fine folks at data.world discussing the work that went in to this project: https://medium.com/@sharonbrener/dbf30aeee70b
Among the public datasets available on Kaggle is this one, describing the crimes that have occurred in Austin, TX over a couple of years. This project cleans the data, does some exploratory analysis, and maps various kinds of crime by district
Key Skills: data cleaning, GIS
My first natural language processing/text mining! This was a lot of fun, because I watched the debate and then was able to examine how well my actual perceptions matched what the data told me.
Key Skills: NLP, data cleaning
This project is part of my work for Data for Democracy, a great loose association of data scientists working on projects for public benefit in their free time. This was my first Shiny app, and it’s always getting a few tweaks and improvements when I have time.
Key Skills: web coding, data visualization, Shiny
What features of patients help providers predict who is at risk of not showing up to appointments? This one provides insights that could be used by the actual hospital that is the source of the data that can be used to improve their patient care.
Key Skills: data cleaning, modeling, data visualization, machine learning
I think this is a good kernel, but it never got traction because the data was not glamorous and the results were not very cheerful. In short, the dental coverage from the ACA is seriously inadequate for population needs, unfortunately.
Key Skills: data cleaning, GIS
In this project, I used a provided dataset of facebook posts from a community group and analyzed a few details about the content- specifically, how sentiment and gender related to “likes” on the posts.
Key Skills: NLP, data cleaning, data visualization
s.kirmer@gmail.com | kaggle.com/skirmer
See what I’m reading on Pocket: http://getpocket.com/@data_stephanie